International audienceThe paper describes a theoretical apparatus and an algorithmic part of application of the Green matrix-valued functions for time-domain analysis of systems of linear stochastic integro-differential equations. It is suggested that these systems are subjected to Gaussian nonstationary stochastic noises in the presence of model parameter uncertainties that are described in the framework of the probability theory. If the uncertain model parameter is fixed to a given value, then a time-history of the system will be fully represented by a second-order Gaussian vector stochastic process whose properties are completely defined by its conditional vector-valued mean function and matrix-valued covariance function. The scheme that...
<p>In this paper, we present the numerical solution of ordinary differential equations (or SDEs), fr...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
This work develops numerical techniques for the simulation of systems with stochastic parameters, mo...
International audienceThe paper is devoted to the computational time-domain formulation of linear vi...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
The main aim is to present recent developments in applications of symbolic computing in probabilisti...
AbstractThe paper is devoted to the computational time-domain formulation of linear viscoelastic sys...
A family of stochastic Newmark methods are explored for direct(path-wise or strong) integrations of ...
4 Abstract: The time-domain response of a randomly parameterized structural dynamic system is invest...
The predictive accuracy of stochastic systems depends on the calibration accuracy of its uncertain p...
International audienceThe paper is devoted to the identification of stochastic loads applied to a no...
The Gaussian probability closure technique is applied to study the random response of multidegree of...
Uncertainty is an inherent feature of both properties of physical systems and the inputs to these sy...
The Gaussian probability closure technique is applied to study the random response of multidegree of...
The Gaussian probability closure technique is applied to study the random response of multidegree of...
<p>In this paper, we present the numerical solution of ordinary differential equations (or SDEs), fr...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
This work develops numerical techniques for the simulation of systems with stochastic parameters, mo...
International audienceThe paper is devoted to the computational time-domain formulation of linear vi...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
The main aim is to present recent developments in applications of symbolic computing in probabilisti...
AbstractThe paper is devoted to the computational time-domain formulation of linear viscoelastic sys...
A family of stochastic Newmark methods are explored for direct(path-wise or strong) integrations of ...
4 Abstract: The time-domain response of a randomly parameterized structural dynamic system is invest...
The predictive accuracy of stochastic systems depends on the calibration accuracy of its uncertain p...
International audienceThe paper is devoted to the identification of stochastic loads applied to a no...
The Gaussian probability closure technique is applied to study the random response of multidegree of...
Uncertainty is an inherent feature of both properties of physical systems and the inputs to these sy...
The Gaussian probability closure technique is applied to study the random response of multidegree of...
The Gaussian probability closure technique is applied to study the random response of multidegree of...
<p>In this paper, we present the numerical solution of ordinary differential equations (or SDEs), fr...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
This work develops numerical techniques for the simulation of systems with stochastic parameters, mo...